2023
DOI: 10.1111/mice.13074
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A hybrid ontology‐based semantic and machine learning model for the prediction of spring breakup

Abstract: River ice breakups carry the potential for high flows and flooding and are of great interest to accurately predict. A challenge in forecasting these events is the management of the massive amounts of data associated with an ice season. This study couples ontological and machine learning models in a new hybrid modeling framework to predict spring breakup on a national scale. The Ice Season Ontology sorts the data and allows for a user‐friendly means of analyzing any ice season, providing insight on which variab… Show more

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